posted on 2017-06-06, 02:44authored byPoskitt, D. S.
In this paper we will investigate the consequences of applying the sieve bootstrap
under regularity conditions that are sufficiently general to encompass both fractionally
integrated and non-invertible processes. The sieve bootstrap is obtained by approximating
the data generating process by an autoregression whose order h increases with the
sample size T. The sieve bootstrap may be particularly useful in the analysis of fractionally
integrated processes since the statistics of interest can often be non-pivotal with
distributions that depend on the fractional index d. The validity of the sieve bootstrap
is established and it is shown that when the sieve bootstrap is used to approximate the
distribution of a general class of statistics admitting an Edgeworth expansion then the
error rate achieved is of order O(Tβ+d−1), for any β > 0. Practical implementation of the
sieve bootstrap is considered and the results are illustrated using a canonical example.
History
Year of first publication
2006
Series
Department of Econometrics and Business Statistics.